Literature DB >> 34728818

An introduction to machine learning and analysis of its use in rheumatic diseases.

Kathryn M Kingsmore1, Christopher E Puglisi2, Amrie C Grammer2, Peter E Lipsky2.   

Abstract

Machine learning (ML) is a computerized analytical technique that is being increasingly employed in biomedicine. ML often provides an advantage over explicitly programmed strategies in the analysis of multidimensional information by recognizing relationships in the data that were not previously appreciated. As such, the use of ML in rheumatology is increasing, and numerous studies have employed ML to classify patients with rheumatic autoimmune inflammatory diseases (RAIDs) from medical records and imaging, biometric or gene expression data. However, these studies are limited by sample size, the accuracy of sample labelling, and absence of datasets for external validation. In addition, there is potential for ML models to overfit or underfit the data and, thereby, these models might produce results that cannot be replicated in an unrelated dataset. In this Review, we introduce the basic principles of ML and discuss its current strengths and weaknesses in the classification of patients with RAIDs. Moreover, we highlight the successful analysis of the same type of input data (for example, medical records) with different algorithms, illustrating the potential plasticity of this analytical approach. Altogether, a better understanding of ML and the future application of advanced analytical techniques based on this approach, coupled with the increasing availability of biomedical data, may facilitate the development of meaningful precision medicine for patients with RAIDs.
© 2021. Springer Nature Limited.

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Year:  2021        PMID: 34728818     DOI: 10.1038/s41584-021-00708-w

Source DB:  PubMed          Journal:  Nat Rev Rheumatol        ISSN: 1759-4790            Impact factor:   20.543


  97 in total

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Journal:  JAMA Netw Open       Date:  2019-03-01

Review 7.  Application of machine learning in rheumatic disease research.

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8.  Identifying lupus patients in electronic health records: Development and validation of machine learning algorithms and application of rule-based algorithms.

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5.  Dialogue: High-throughput studies in rheumatology: time for unsupervised clustering?

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Review 6.  Computational pathology for musculoskeletal conditions using machine learning: advances, trends, and challenges.

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Review 7.  The Past, Present, and Future in Antinuclear Antibodies (ANA).

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  7 in total

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